Smartgraph:人工智能图形数据库

H. Cooper, G. Iyengar, Ching-Yung Lin
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引用次数: 1

摘要

传统上,图数据库和分布式图计算系统通过鼓励用户从单个图对象(如顶点和边)的角度来抽象算法的设计和执行。在本文中,我们介绍了SmartGraph,这是一个图形数据库,它依赖于像现实生活中的计算机网络中经常发现的更智能的设备——路由器那样的思考。与现有的在子图级别工作的方法不同,SmartGraph是作为人工智能通信顺序过程的网络实现的。这种设计的主要目标是给每个“路由器”很大程度的自主权。我们演示了这种设计如何促进了一个优化问题的制定和解决,我们称之为“路由器表示问题”,其中每个路由器根据其各自的需求(包括其本地数据结构和所要求的操作)选择一个有益的图数据结构。我们展示了一个路由器表示问题的解决方案,其中具有指数复杂度的组合全局优化问题被简化为一系列线性问题,每个AI路由器都可以局部解决。
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SMARTGRAPH: AN ARTIFICIALLY INTELLIGENT GRAPH DATABASE
Graph databases and distributed graph computing systems have traditionally abstracted the design and execution of algorithms by encouraging users to take the perspective of lone graph objects, like vertices and edges. In this paper, we introduce the SmartGraph, a graph database that instead relies upon thinking like a smarter device often found in real-life computer networks, the router. Unlike existing methodologies that work at the subgraph level, the SmartGraph is implemented as a network of artificially intelligent Communicating Sequential Processes. The primary goal of this design is to give each “router” a large degree of autonomy. We demonstrate how this design facilitates the formulation and solution of an optimization problem which we refer to as the “router representation problem”, wherein each router selects a beneficial graph data structure according to its individual requirements (including its local data structure, and the operations requested of it). We demonstrate a solution to the router representation problem wherein the combinatorial global optimization problem with exponential complexity is reduced to a series of linear problems locally solvable by each AI router.
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